We found a match
Your institution may have access to this item. Find your institution then sign in to continue.
- Title
An attempt at applying machine learning in diagnosing marine ship engine turbochargers .
- Authors
Adamkiewicz, Andrzej; Nikończuk, Piotr
- Abstract
The article presents a diagnosis of turbochargers in the supercharging systems of marine engines in terms of maintenance decisions. The efficiency of turbocharger rotating machines was defined. The operating parameters of turbocharging systems used to monitor the correct operation and diagnose turbochargers were identified. A parametric diagnostic test was performed. Relationships between parameters for use in machine learning were selected. Their credibility was confirmed by the results of the parametric test of the turbocharger system and the main engine, verified by the coefficient of determination. A particularly good fit of the describing functions was confirmed. As determinants of the technical condition of a turbocharger, the relationship between the rotational speed of the engine shaft, the turbocharger rotor assembly and the charging air pressure was assumed. In the process of machine learning, relationships were created between the rotational speed of the engine shaft and the boost pressure, and the indicator of the need for maintenance. The accuracy of the maintenance decisions was confirmed by trends in changes in the efficiency of compressors.
- Subjects
TURBOCHARGERS; MARINE engines; MARITIME shipping; MACHINE learning; ENGINE maintenance &; repair; AIR pressure
- Publication
Maintenance & Reliability / Eksploatacja i Niezawodność, 2022, Vol 24, Issue 4, p795
- ISSN
1507-2711
- Publication type
Article
- DOI
10.17531/ein.2022.4.19